π€ Machine Learning Study Vault
A collaborative, structured, and hands-on learning vault for Machine Learning β built by students, for students.
We follow a curated roadmap based on Hands-On Machine Learning and other top resources, focusing on shared progress, real understanding, and community-driven learning.
π What This Is
This repository is a living knowledge base for learning ML together.
- π Covers core ML topics with practical focus
- π§ Includes math and Python foundations
- π οΈ Features projects, notes, exercises, and tools
- ποΈ Organized using Obsidian
- π Built to be shared, expanded, and contributed to by a group
- π§± Powered by Quartz β customized for this ML learning vault.
π§ Roadmap
We maintain a central πRoadmap to track progress, topic links, learning status, and assigned tasks.
Each topic folder contains:
01-Overview.md
β what the topic is about02-Resources.md
β recommended links and materials03-CodeExamples/
β code notebooks or demos04-Notes.md
β handwritten or collaborative notes05-Exercises.md
β problems and solutions06-Discussion.md
(optional) β team thoughts or questions
π Folder Structure
Folder | Purpose |
---|---|
00-General | Roadmap, repo structure, contribution notes |
01-Topics | Learning content by topic (math, ML, DL, etc.) |
02-Papers | Research papers and summaries |
03-Projects | Hands-on projects and experiments |
04-Meetings | Meeting notes, tasks, and planning |
05-Templates | Reusable templates (e.g., for meetings, overviews) |
06-CheatSheets | Quick reference guides and tips |
07-Resources | Datasets, tools, and useful external resources |
β Contributing
Everyone is welcome to contribute. This is a group-driven space, not a one-person show.
π Guidelines
- Follow the existing topic structure when adding new content.
- Prefer pull requests with clear commit messages.
- Be kind and supportive. Weβre all learning.
π License
This repository is open for educational use. Please respect content sources and contributors.